We systematically investigate the expressive power of path-based graph neural networks. While it has been shown that path-based graph neural networks can achieve strong empirical results, an investigation into their expressive power is lacking. Therefore, we propose PATH-WL, a general class of color refinement algorithms based on paths and shortest path distance information. We show that PATH-WL is incomparable to a wide range of expressive graph neural networks, can count cycles, and achieves strong empirical results on the notoriously difficult family of strongly regular graphs. Our theoretical results indicate that PATH-WL forms a new hierarchy of highly expressive graph neural networks.

Graziani, C., Drucks, T., Jogl, F., Bianchini, M., Scarselli, F., Gartner, T. (2024). The Expressive Power of Path-Based Graph Neural Networks. In Proceedings of Machine Learning Research (pp.16226-16249). New York : ML Research Press.

The Expressive Power of Path-Based Graph Neural Networks

Graziani C.;Bianchini M.;Scarselli F.;
2024-01-01

Abstract

We systematically investigate the expressive power of path-based graph neural networks. While it has been shown that path-based graph neural networks can achieve strong empirical results, an investigation into their expressive power is lacking. Therefore, we propose PATH-WL, a general class of color refinement algorithms based on paths and shortest path distance information. We show that PATH-WL is incomparable to a wide range of expressive graph neural networks, can count cycles, and achieves strong empirical results on the notoriously difficult family of strongly regular graphs. Our theoretical results indicate that PATH-WL forms a new hierarchy of highly expressive graph neural networks.
2024
Graziani, C., Drucks, T., Jogl, F., Bianchini, M., Scarselli, F., Gartner, T. (2024). The Expressive Power of Path-Based Graph Neural Networks. In Proceedings of Machine Learning Research (pp.16226-16249). New York : ML Research Press.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11365/1279356